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首页> 外文期刊>Chemical Engineering Communications >An artificial neural network approach to capillary rise in porous media
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An artificial neural network approach to capillary rise in porous media

机译:人工神经网络方法在多孔介质中毛细血管上升

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An artificial neural network (ANN) was used to analyze the capillary rise in porous media. Wetting experiments were performed with 15 liquids and 15 different powders. The liquids covered a wide range of surface tension (15.45-71.99mJ/m(2)) and viscosity (0.25-21 mPa.s). The powders also provided an acceptable range of particle size (0.012-45 mu m) and surface free energy (25.5-62.2mJ/m(2)). An artificial neural network was employed to predict the time of capillary rise for a known given height. The network's inputs were density, surface tension, and viscosity for the liquids and particle size, bulk density, packing density, and surface free energy for the powders. Two statistical parameters, the product moment correlation coefficient (r(2)) and the performance factor (PF/3), were used to correlate the actual experimentally obtained times of capillary rise to: (i) their equivalent values as predicted by a designed and trained artificial neural network; and (ii) their corresponding values as calculated by the Lucas-Washburn equation as well as the equivalent values as calculated by its various other modified versions. It must be noted that for a perfect correlation r(2) = 1 and PF/3 = 0. The results showed that only the present ANN approach was able to predict with superior accuracy (i.e., r(2) = 0.92, PF/3 = 51) the time of capillary rise. The Lucas-Washburn calculations gave the worst correlations (r(2) = 0.15, PF/3 = 1002). Furthermore, some of the modifications of this equation as proposed by different workers did not seem to conspicuously improve the relationships, giving a range of inferior correlations between the calculated and experimentally determined times of capillary rise (i.e., r(2) = 0.27 to 0.48, PF/3 = 112 to 285).
机译:人工神经网络(ANN)用于分析多孔介质中的毛细管上升。用15种液体和15种不同的粉末进行了润湿实验。液体覆盖了很宽的表面张力(15.45-71.99mJ / m(2))和粘度(0.25-21 mPa.s)。这些粉末还提供了可接受的粒度范围(0.012-45μm)和表面自由能(25.5-62.2mJ / m(2))。使用人工神经网络预测已知给定高度下毛细血管上升的时间。该网络的输入是液体的密度,表面张力和粘度,粉末的粒径,堆积密度,堆积密度和表面自由能。两个统计参数,乘积力矩相关系数(r(2))和性能因子(PF / 3),用于将实际实验获得的毛细管上升时间与以下各项相关:(i)由设计人员预测的等效值和训练有素的人工神经网络; (ii)由Lucas-Washburn方程计算的相应值,以及由其各种其他修改版本计算的等效值。必须注意的是,对于理想的相关性,r(2)= 1且PF / 3 =0。结果表明,只有当前的ANN方法才能以更高的精度进行预测(即r(2)= 0.92,PF / 3 = 51)毛细管上升的时间。 Lucas-Washburn计算得出最差的相关性(r(2)= 0.15,PF / 3 = 1002)。此外,由不同工作人员提出的对该方程的某些修改似乎并未显着改善这种关系,从而在计算出的毛细血管上升时间和实验确定的毛细血管上升时间之间给出了较弱的相关性(即r(2)= 0.27至0.48 ,PF / 3 = 112至285)。

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